Numerous studies have been conducted to investigate the properties of
large-scale temporal graphs. Despite the ubiquity of these graphs in real-world
scenarios, it's usually impractical for us to obtain the whole real-time graphs
due to privacy concerns and technical limitations. In this paper, we introduce
the concept of {\it Live Graph Lab} for temporal graphs, which enables open,
dynamic and real transaction graphs from blockchains. Among them, Non-fungible
tokens (NFTs) have become one of the most prominent parts of blockchain over
the past several years. With more than \40billionmarketcapitalization,thisdecentralizedecosystemproducesmassive,anonymousandrealtransactionactivities,whichnaturallyformsacomplicatedtransactionnetwork.However,thereislimitedunderstandingaboutthecharacteristicsofthisemergingNFTecosystemfromatemporalgraphanalysisperspective.Tomitigatethisgap,weinstantiatealivegraphwithNFTtransactionnetworkandinvestigateitsdynamicstoprovidenewobservationsandinsights.Specifically,throughdownloadingandparsingtheNFTtransactionactivities,weobtainatemporalgraphwithmorethan4.5millionnodesand124millionedges.Then,aseriesofmeasurementsarepresentedtounderstandthepropertiesoftheNFTecosystem.Throughcomparisonswithsocial,citation,andwebnetworks,ouranalysesgiveintriguingfindingsandpointoutpotentialdirectionsforfutureexploration.Finally,wealsostudymachinelearningmodelsinthislivegraphtoenrichthecurrentdatasetsandprovidenewopportunitiesforthegraphcommunity.Thesourcecodesanddatasetareavailableathttps://livegraphlab.github.io.